Deep neural network model for enhancing disease prediction using auto encoder based broad learning.

Journal: SLAS technology
Published Date:

Abstract

Bioinformatics and Healthcare Integration Disease prediction models have been revolutionized by Big Data. These models, which make use of extensive medical data, predict illnesses before symptoms appear. Deep neural networks are well-known for their ability to increase accuracy by extending the network's depth and modifying weights through gradient descent. Traditional approaches, however, are hindered by issues such as gradient instability and delayed training. As a substitute, the Broad Learning (BL) system is introduced, which avoids gradient descent in favor of quick reconstruction by incremental learning. However, BL has trouble extracting complicated features from medical data, which makes it perform poorly in cases involving complex healthcare. We suggest ABL, which combines the effectiveness of BL with the noise reduction of Denoising Auto Encoder (AE), to address this. Robust feature extraction is an area in which the hybrid model shines, especially in intricate medical environments. Accuracy of up to 98.50 % is achieved by remarkable results from validation using a variety of datasets. The ability of ABL to quickly adapt through incremental learning suggests that it may be used to forecast diseases in complicated healthcare contexts with agility and accuracy.

Authors

  • Haewon Byeon
    Department of Speech Language Pathology, School of Public Health, Honam University, 417, Eodeung-daero, Gwangsan-gu, Gwangju 62399, Korea. bhwpuma@naver.com.
  • Prashant Gc
    Department of Computer Science, Texas Tech University, Lubbock 79409, USA.
  • Shaikh Abdul Hannan
    Department of Computer Science and Information Technology, Albaha University, Albaha, Kingdom of Saudi Arabia.
  • Faisal Yousef Alghayadh
    Computer Science and Information Systems Department, College of Applied Sciences, AlMaarefa University, Riyadh, Saudi Arabia.
  • Arsalan Muhammad Soomar
    Faculty of Electrical and Control Engineering, Gdańsk University of Technology, Gdańsk, Poland.
  • Mukesh Soni
    Department of CSE, University Centre for Research & Development Chandigarh University, Mohali, Punjab, 140413, India.
  • Mohammed Wasim Bhatt
    Model Institute of Engineering and Technology, Jammu, J&K, India. Electronic address: wasimmohammad71@gmail.com.